MySQL数据库优化的一些笔记

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0. 索引很重要

  之前列举记录用了下面的语句。state字段为索引。

  SELECT * FROM feed_urls WHERE state='ok' AND feed_url<>'' LIMIT N,10

  当记录数量很大时,有几万之后,这句SQL就很慢了。主要是因为feed_url没有建立索引。后来的解决方法是,把feed_url为空的,设为一个ok以外的state值,就行了。

  1. 索引不是万能的

  为了计算记录总数,下面的语句会很慢。

 

  mysql> SELECT COUNT(*) FROM feed_urls WHERE state='error';

  +----------+

  | COUNT(*) |

  +----------+

  | 30715 |

  +----------+

  1 row in set (0.14 sec)

  mysql> EXPLAIN SELECT COUNT(*) FROM feed_urls WHERE state='error'\G

  *************************** 1. row ***************************

  id: 1

  select_type: SIMPLE

  table: feed_urls

  type: ref

  possible_keys: state,page_index

  key: page_index

  key_len: 10

  ref: const

  rows: 25936

  Extra: Using where; Using index

  1 row in set (0.00 sec)

 

  state为索引,请求用时140ms。遍历了state='error'索引下的每一条记录。

 

  mysql> SELECT state,COUNT(*) FROM feed_urls GROUP BY state;

  +----------+----------+

  | state | COUNT(*) |

  +----------+----------+

  | error | 30717 |

  | fetching | 8 |

  | nofeed | 76461 |

  | ok | 74703 |

  | queued | 249681 |

  +----------+----------+

  5 rows in set (0.55 sec)

  mysql> EXPLAIN SELECT state,COUNT(*) FROM feed_urls GROUP BY state\G

  *************************** 1. row ***************************

  id: 1

  select_type: SIMPLE

  table: feed_urls

  type: index

  possible_keys: NULL

  key: state

  key_len: 10

  ref: NULL

  rows: 431618

  Extra: Using index

  1 row in set (0.00 sec)

 

  请求用时550ms。遍历了每个state下的每一条记录。

  改进方法:

  独立一个表用来计数,使用MySQL的Trigger同步计数:

 

  CREATE TRIGGER my_trigger AFTER UPDATE ON feed_urls

  FOR EACH ROW BEGIN

  IF OLD.state <> NEW.state THEN

  IF NEW.state='ok' THEN

  UPDATE feed_stat SET count_feed = count_feed + 1;

  END IF;

  IF NEW.state IN ('ok', 'error', 'nofeed') THEN

  UPDATE feed_stat SET count_access = count_access + 1;

  END IF;

  END IF;

  END

 

  2. 当分页很大时

 

  mysql> SELECT * FROM feed_urls LIMIT 230000, 1\G

  *************************** 1. row ***************************

  id: 736841f82abb0bc87ccfec7c0fdbd09c30b5a24d

  link: http://mappemunde.typepad.com/

  title: Tim Peterson

  feed_url: NULL

  update_time: 2012-05-12 11:01:56

  state: queued

  http_server: NULL

  abstract: NULL

  previous_id: ceea30e0ba609b69198c53ce71c44070d69038c5

  ref_count: 1

  error: NULL

  aid: 230001

  1 row in set (0.50 sec)

  mysql> EXPLAIN SELECT * FROM feed_urls LIMIT 230000, 1\G

  *************************** 1. row ***************************

  id: 1

  select_type: SIMPLE

  table: feed_urls

  type: ALL

  possible_keys: NULL

  key: NULL

  key_len: NULL

  ref: NULL

  rows: 431751

  Extra:

  1 row in set (0.00 sec)

 

  读取一条记录,耗时500ms,因为表记录是变长的,所以MySQL不能算出目标位置,只能每一条记录的数过去。

  改进方法:

  通过索引定位,数索引比数记录要快,因为索引占用的空间比整条记录小很多。

 

  mysql> SELECT * FROM (SELECT aid FROM feed_urls ORDER BY aid LIMIT 215000, 1) d JOIN feed_urls u ON d.aid=u.aid\G

  *************************** 1. row ***************************

  aid: 215001

  id: 2e4b1a385c8aae40b3ec2af9153805ca446f2029

  link: http://ncse.com/

  title: NCSE

  feed_url: NULL

  update_time: 2012-05-12 10:47:15

  state: queued

  http_server: NULL

  abstract: NULL

  previous_id: 819a6e3c5edc1624a9b8f171d8d3ae269843785f

  ref_count: 3

  error: NULL

  aid: 215001

  1 row in set (0.06 sec)

  mysql> EXPLAIN SELECT * FROM (SELECT aid FROM feed_urls ORDER BY aid LIMIT 215000, 1) d JOIN feed_urls u ON d.aid=u.aid\G

  *************************** 1. row ***************************

  id: 1

  select_type: PRIMARY

  table:

  type: system

  possible_keys: NULL

  key: NULL

  key_len: NULL

  ref: NULL

  rows: 1

  Extra:

  *************************** 2. row ***************************

  id: 1

  select_type: PRIMARY

  table: u

  type: const

  possible_keys: aid

  key: aid

  key_len: 4

  ref: const

  rows: 1

  Extra:

  *************************** 3. row ***************************

  id: 2

  select_type: DERIVED

  table: feed_urls

  type: index

  possible_keys: NULL

  key: aid

  key_len: 4

  ref: NULL

  rows: 211001

  Extra: Using index

  3 rows in set (0.15 sec)

 

  耗时60ms,比之前的方法快了将近10倍。如果LIMIT语句里还有WHERE a=1,应该建立一个(a,aid)的索引。

  话说,MySQL好像还是不能直接算出第21500条索引的位置呀,这种方法还是数了索引了,能算出来就直接0ms了。不过这样的效率,对于百万级的,还能应付吧。如果是千万级的或者像我之前在KS创建的一张上亿条记录的表(120G),这种方法就肯定不行了。

  经过上述优化,打开最后一页的速度已经很快了(之前需要800ms,现在则为300ms左右)。

\

  膜拜下这Burst.NET最低档次的VPS (30RMB/month)。

  root@xiaoxia-pc:~/# ping feed.readself.com -n

  PING app.readself.com (184.82.185.32) 56(84) bytes of data.

  64 bytes from 184.82.185.32: icmp_req=1 ttl=45 time=161 ms

  64 bytes from 184.82.185.32: icmp_req=2 ttl=45 time=161 ms

  64 bytes from 184.82.185.32: icmp_req=3 ttl=45 time=161 ms

  用同样的方法,优化了搜索引擎的排名算法。即排名过程中选取尽量少的值出来排序,排序后再JOIN一次获取结果的信息。

  排序过程如下:

 

  SELECT u.*, count_level(u.id) lv

  FROM(

  SELECT f.id, f.ref_count, MATCH(i.link,i.title) AGAINST (keywords) score

  FROM feed_index i

  JOIN feed_urls f ON f.id=i.id

  WHERE MATCH(i.link,i.title) AGAINST (keywords)

  ORDER BY score*0.5 + score*0.5*(ref_count/max_ref_count_in_result) DESC

  LIMIT offset,10

  ) d JOIN feed_urls u ON u.id = d.id

 

  目前处理10万记录的全文索引数据,MySQL还是可以满足的,就是不知道上百万之后,还能不能撑下去。撑不下去就依赖第三方的工具了,例如Sphinx

  3. SELECT里的函数

  给FeedDB增加了层次的显示。因为本人太懒,所以没有给数据库表增加一个记录深度的字段。所以,直接写了一个MySQL的自定义函数 count_level,用来统计通过parent_id一直找到顶层经过的路径长度(Level)。

 

  CREATE DEFINER=`feeddb_rw`@`%` FUNCTION `count_level`(fid char(40)) RETURNS int(11)

  BEGIN

  SET @levels = 0;

  SET @found = false;

  WHILE NOT @found DO

  SELECT previous_id INTO @prev_id FROM feed_urls WHERE id=fid;

  IF @prev_id is null OR @prev_id = '' THEN

  SET @found = true;

  ELSE

  SET @levels = @levels + 1;

  SET fid = @prev_id;

  END IF;

  END WHILE;

  IF @prev_id is null THEN

  RETURN null;

  END IF;

  RETURN @levels;

  END

 

  在网页显示的时候用了类似下面的SQL语句。

 

  mysql> SELECT u.*, count_level(u.id) FROM feed_urls u ORDER BY ref_count DESC LIMIT 12000,1\G

  *************************** 1. row ***************************

  id: e42f44b04dabbb9789ccb4709278e881c54c28a3

  link: http://tetellita.blogspot.com/

  title: le hamburger et le croissant

  feed_url: http://www.blogger.com/feeds/7360650/posts/default

  update_time: 2012-05-15 14:50:53

  state: ok

  http_server: GSE

  abstract: Lepekmezest un épais sirop bordeaux obtenu par réduction dumoût de raisin, une sorte de mélasse de raisin, en somme. Légèrement acidulé, il apporte du pep's aux yaourts et nappe avec bonheur les

  previous_id: 129cabd96e7099a53b78c7ddeff98658351082e9

  ref_count: 9

  error: NULL

  aid: 174262

  count_level(u.id): 8

  1 row in set (4.10 sec)

 

  好吧,悲剧了!4100ms。一定对12000个条目都算了一次count_level,然后再进行排序。所以才用上了4秒那么漫长的时间!!!

  改进方法:

  先SELECT LIMIT,再在派生的临时表里,计算count_level。

 

  mysql> SELECT u.*, count_level(u.id) FROM (

  SELECT id FROM feed_urls ORDER BY ref_count DESC LIMIT 27521,1

  ) d JOIN feed_urls u ON u.id=d.id\G

  *************************** 1. row ***************************

  id: 61df288dda131ffd6125452d20ad0648f38abafd

  link: http://mynokiamobile.org/

  title: My Nokia Mobile

  feed_url: http://mynokiamobile.org/feed/

  update_time: 2012-05-14 14:06:57

  state: ok

  http_server: Apache/2.2.19 (Unix) mod_ssl/2.2.19 OpenSSL/1.0.0-fips mod_auth_passthrough/2.1 mod_bwlimited/1.4 FrontPage/5.0.2.2635

  abstract: ArchivesSelect MonthMay 2012April 2012March 2012February 2012January 2012December 2011November 2011October 2011September 2011August 2011July 2011June 2011May 2011April 2011March 2011February 2011Janua

  previous_id: f37af92bb89c08f6d4b69e72eab05d8ab1e2aca4

  ref_count: 5

  error: NULL

  aid: 154996

  count_level(u.id): 8

  1 row in set (0.09 sec)

 

  如此,优化之后效果好很多了!但是还可以继续优化,例如建立一个字段存储Level的值应该是最好的办法了。

  初次了解MySQL一些工作机制,欢迎一起探讨!

  参考文献:

  http://explainextended.com/2009/10/23/mysql-order-by-limit-performance-late-row-lookups/

  http://www.mysqlperformanceblog.com/2006/09/01/order-by-limit-performance-optimization/

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